
LLM Engineering: Structured Outputs
Date : 2024-01-01
Description
This summary was drafted with mixtral-8x7b-instruct-v0.1.Q5_K_M.gguf
This course by Jason Liu is designed to help learners enhance their LLM engineering skills. It covers topics such as structured JSON output handling, function calling, and complex validations using the Pydantic library. The course includes practical examples and real-world applications, aiming to make LLMs less mystical and more integrated with traditional workflows.
Read article here
Recently on :
Artificial Intelligence
Information Processing | Computing
PITTI - 2026-03-05
Scaling Trust : a Missing Piece in Multi-Agent Worlds
Humanity’s ability to build complex civilizations relies on an "invisible infrastructure" - the shared culture, institutions, a...
PITTI - 2026-01-14
Cultural, Ideological and Political Bias in LLMs
Transcription of a talk given during the work sessions organized by Technoréalisme on December 9, 2025, in Paris. The talk pres...
WEB - 2025-11-13
Measuring political bias in Claude
Anthropic gives insights into their evaluation methods to measure political bias in models.
WEB - 2025-10-09
Defining and evaluating political bias in LLMs
OpenAI created a political bias evaluation that mirrors real-world usage to stress-test their models’ ability to remain objecti...
WEB - 2025-07-23
Preventing Woke AI In Federal Government
Citing concerns that ideological agendas like Diversity, Equity, and Inclusion (DEI) are compromising accuracy, this executive ...